首页> 外文期刊>Journal of Construction Engineering and Management >BIMASR: Framework for Voice-Based BIM Information Retrieval
【24h】

BIMASR: Framework for Voice-Based BIM Information Retrieval

机译:Bimasr:基于语音的BIM信息检索框架

获取原文
获取原文并翻译 | 示例
           

摘要

Voice is the most convenient means for human beings to communicate with others, even if the objects of their communication are not other humans but machines or computers. Many industries, and even the architecture, engineering, construction, and operations (AECO) industry, have attempted to study and apply speech recognition systems in their operations to improve work efficiency and productivity. However, previous studies on speech recognition had two limitations: they used keywords requiring basic knowledge of building information modeling (BIM) commands for using them and in searching BIM data, they relied on the Industry Foundation Classes (IFC) format, which involves converting BIM data to IFC. Such methods did not conduce to direct retrieval in BIM software. In the latter case, data search was possible, but data manipulation was not. To improve on the limitations of previous studies, this study developed a building information modeling automatic speech recognition (BIMASR) framework that requires no knowledge of BIM commands, which allows for the input of natural language (NL)-based questions into BIM software using human voice to search and manipulate data. The framework consists of three modules: one for voice recognition, one for natural language processing (syntax and semantic analysis), and one for BIM data preprocessing and interworking with relational databases. The manipulation of BIM data with NL-based speech recognition converts the BIM operating environment from an expert-oriented into a user-oriented environment. This conversion allows for more BIM interaction and the popularization of BIM use and enhances the use of BIM in dynamic environments such as virtual reality, augmented reality, and holograms, where conventional input devices are typically absent.
机译:声音是人类与他人沟通最方便的手段,即使他们的沟通的对象不是其他人,而且是机器或计算机。许多行业,甚至建筑,工程,建设和运营(AECO)行业都试图在其运营中学习和应用语音识别系统,以提高工作效率和生产力。但是,上一篇关于语音识别的研究有两个限制:它们使用了需要建立信息建模(BIM)命令的基本知识的关键字来使用它们和搜索BIM数据,他们依赖于行业基础类(IFC)格式,涉及转换BIM的格式数据到IFC。这些方法在BIM软件中没有涉及直接检索。在后一种情况下,数据搜索是可能的,但数据操纵不是。为了提高先前研究的局限性,本研究开发了一种建筑信息建模自动语音识别(BIMASR)框架,该框架不需要了解BIM命令,这允许使用人类的BIM软件对自然语言(NL)的输入来输入BIM软件语音搜索和操作数据。该框架由三个模块组成:一个用于语音识别,一个用于自然语言处理(语法和语义分析),一个用于BIM数据预处理和与关系数据库的互通。使用基于NL的语音识别进行BIM数据的操纵将BIM操作环境从面向用户为导向的环境转换。该转换允许更多的BIM交互和BIM使用的普及,并增强BIM在动态环境中使用BIM,例如虚拟现实,增强现实和全息图,其中通常不存在传统输入设备。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号